new exact penalty functions for nonlinear constrained optimization problems

new exact penalty functions for nonlinear constrained optimization problems

;Bingzhuang Liu;Wenling Zhao
science and technology of advanced materials 2014 Vol. 2014 pp. -
78
liu2014abstractnew

Abstract

For two kinds of nonlinear constrained optimization problems, we propose two simple penalty functions, respectively, by augmenting the dimension of the primal problem with a variable that controls the weight of the penalty terms. Both of the penalty functions enjoy improved smoothness. Under mild conditions, it can be proved that our penalty functions are both exact in the sense that local minimizers of the associated penalty problem are precisely the local minimizers of the original constrained problem.

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194029
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10.1155/2014/738926
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